Commit Graph

624 Commits

Author SHA1 Message Date
assistant-librarian[bot]
50217c14c8 test: Add umbrella test targets for CK Tile operations (#4301)
## Proposed changes

Adds operation-specific umbrella test targets for CK Tile to enable
running all tests for a specific operation without running the entire
test suite. This improves the development workflow by allowing faster
iteration when working on specific operations.

## Motivation

Previously, developers working on CK Tile operations could only:
- Run individual test executables one at a time
- Run global labels (, , ) which test the entire codebase
- Build all tests for an operation but had no simple way to run them all

This made it cumbersome to validate changes to a specific operation
(e.g., GEMM quantization) without either running tests individually or
running the entire test suite.

### Documentation

- - Comprehensive testing guide with usage examples and implementation
details

## Usage Examples

# Run all GEMM tests with 256 parallel jobs
ninja -j256 ck_tile_gemm_tests

# Run all GEMM block scale (quantization) tests
ninja -j256 ck_tile_gemm_block_scale_tests

# Run all GEMM StreamK tests
ninja -j256 ck_tile_gemm_streamk_tests

## Checklist

Please put an into the boxes that apply. You can also fill these out
after creating the PR. If you're not sure, please don't hesitate to ask.

- [x] I have added tests relevant to the introduced functionality, and
the unit tests are passing locally
- [x] I have added the test to REGRESSION_TESTS list defined at the top
of CMakeLists.txt in tests/CMakeLists.txt, **IF** the test takes more
than 30 seconds to run.
- [x] I have added inline documentation which enables the maintainers
with understanding the motivation
- [x] I have removed the stale documentation which is no longer relevant
after this pull request
- [ ] (If this change is user-facing) I have added release notes which
provide the end users with a brief summary of the improvement from this
pull request
- [x] I have run  on all changed files
- [x] Any dependent changes have been merged

## Discussion

If this is a relatively large or complex change, feel free to start a
discussion by explaining why you chose the solution you did and what
alternatives you considered



---
🔁 Imported from
[ROCm/composable_kernel#3654](https://github.com/ROCm/composable_kernel/pull/3654)
🧑‍💻 Originally authored by @AviralGoelAMD

---------

Co-authored-by: AviralGoelAMD <aviral.goel@amd.com>
Co-authored-by: assistant-librarian[bot] <assistant-librarian[bot]@users.noreply.github.com>
Co-authored-by: Illia Silin <98187287+illsilin@users.noreply.github.com>
Co-authored-by: Thomas Ning <Thomas.Ning@amd.com>
2026-03-03 07:39:32 -08:00
Emily Martins
e7f9244c20 [CK_TILE] Reduce Register Spills in Stream-K Reductions (#4984)
## Motivation

In CK Tile Stream-K, kernels using one of two non-atomic reduction
strategies (i.e., linear, tree) have high register spill count, with the
tree reduction generally being worse. These changes act a first step to
help decrease the register spill count.

## Technical Details
### Problem 1: Unvectorized access to partials
In both the linear and tree reductions, workgroups write partials
results to a global buffer; another workgroup will later read this data.
When the initial logic to support reading and writing to the partials
buffer was added (see
https://github.com/ROCm/composable_kernel/pull/3107), the tile
distribution encoding used to read from and write to partials matches
the register layout for the accumulator of the mfma instruction used for
the kernel. Since we do not currently use the transposed register layout
for the accumulator, we end with an encoding that is not optimized for
writing to HBM.

For example: Consider the register layout of the
`v_mfma_f32_16x16x32_fp8_fp8` instruction.
```bash
./matrix_calculator.py --architecture gfx942 --instruction  v_mfma_f32_16x16x32_fp8_fp8 --register-layout --C-matrix
```
<img width="1113" height="537" alt="image"
src="https://github.com/user-attachments/assets/afc8f556-08cc-4224-a6e5-b5edabc5fc02"
/>

The above shows that threads are responsible for consecutive elements
down a column of the C tile. If we use this distribution to read and
write to partials with C in row major, then threads are unable to
perform vectorized reads and writes. Note: thread 0 is shown in red and
thread 1 is shown in green.

Since the C-shuffle Epilogue only supports C in row major, reading and
writing to partials is highly unoptimized.
### Problem 2: Missed opportunity for SPGR use in tree reduction loop
Since the reduction occurs between workgroups, all threads in the
workgroup follow the same execution paths in the tree reduction logic,
hence various variables should be using SGPRs, but they are not.

### Implemented Solutions
1. Add a new tile distribution encoding that is optimized for accessing
partials in HBM. This encoding does not change the data assignment to
threads, it merely changes the addresses to which they write/read in the
partials buffer. For example, continuing with the
`v_mfma_f32_16x16x32_fp8_fp8` instruction, the new encoding would result
in threads writing in the following layout:
<img width="517" height="342" alt="image"
src="https://github.com/user-attachments/assets/93b5e0ea-bafc-47b8-89bb-c40ba75cb202"
/>

This layout ensures that each thread writes along a row, enabling
`buffer_{store|load}_dwordx4` instructions (i.e., vectorized accesses).
This helps reduce register usage due to requiring fewer offset
calculations.

2. To force SGPR usage in the tree reduction loop, I make use of CK
Tile's `amd_wave_read_first_lane` which is a wrapper around
`__builtin_amdgcn_readfirstlane`. This helps reduce VGPR spills in the
tree reduction.


_These changes do not fully eliminate register spills. Future work will
aim to further reduce spills. But these changes make good progress._

## Test Plan

Added tests for different warp tile sizes to validate that the new
encoding works with different `WarpGemm` variants.

## Test Result

All tests pass locally on all gfx9 architectures.

Some results for decreases in register spills on gfx942: (BL = baseline)
| Kernel | SGPR Spill (BL) | SGPR Spill (new) | SGPR Delta | SGPR % |
VGPR Spill (BL) | VGPR Spill (new) | VGPR Delta | VGPR % |

|--------|------------------:|------------------:|-----------:|-------:|-------------------:|------------------:|-----------:|-------:|
| fp16 linear F/F/F/T 256x256x32 2x2x1 32x32x16 | 223 | 0 | -223 |
-100.0% | 21 | 20 | -1 | -4.8% |
| fp16 tree F/F/F/T 256x256x32 2x2x1 32x32x16 | 233 | 11 | -222 | -95.3%
| 443 | 23 | -420 | -94.8% |
| fp8 linear F/F/F/F 256x256x32 2x2x1 32x32x32 | 221 | 3 | -218 | -98.6%
| 12 | 6 | -6 | -50.0% |
| fp8 tree F/F/F/F 256x256x32 2x2x1 32x32x32 | 230 | 14 | -216 | -93.9%
| 396 | 12 | -384 | -97.0% |


## Submission Checklist

- [x] Look over the contributing guidelines at
https://github.com/ROCm/ROCm/blob/develop/CONTRIBUTING.md#pull-requests.
2026-03-02 10:39:48 -07:00
Max Podkorytov
c8a89a4d9f [CK_TILE] Fix CShuffleEpilogue test to use correct GEMM accumulator distribution (#4518)
## Summary

The test was using LDS distribution to create the accumulator tile, but
CShuffleEpilogue expects the GEMM accumulator distribution that
BlockGemm produces. This mismatch caused incorrect data permutation.

## Changes

- Use WarpGemmDispatcher to get correct accumulator distribution
encoding
- Load test input from host-initialized global memory for deterministic
verification
- Shard tests by data type (FP16, FP8) with gfx950-specific FP8 tests
- Extract scale tests into separate target for better organization
- Implement exact permutation verification (all unique values appear
once)
- Reduce tile size from 256x256 to 128x128 to fit in unique fp16 range
- Add parameterized test configurations for various warp layouts and
MFMA types

## Test plan

- [x] Run new cshuffle epilogue tests

🤖 Generated with [Claude Code](https://claude.com/claude-code)

Co-Authored-By: Claude <noreply@anthropic.com>

---------

Co-authored-by: Claude <noreply@anthropic.com>
Co-authored-by: systems-assistant[bot] <systems-assistant[bot]@users.noreply.github.com>
2026-03-02 00:54:14 -08:00
Max Podkorytov
c5ec2f707a Add generate_identity_sequences helper and replace lambdas with named functors (#4828)
## Summary

- Add `generate_identity_sequences<N>()` helper that returns
`Tuple<Sequence<0>, Sequence<1>, ..., Sequence<N-1>>`
- Replace lambdas with named functors in `transform_tensor_descriptor`
- Add `unpack_and_merge_sequences` helper functor
- Reduces `transform_tensor_descriptor` instantiations from 388 to 32
(92% reduction)

## Motivation

Multiple call sites use `generate_tuple([](auto i) { return
Sequence<i>{}; }, Number<N>{})` pattern. A named helper reduces lambda
instantiations.

Additionally, each lambda in `transform_tensor_descriptor` creates a
unique closure type, causing the function to be instantiated separately
for every call site. Named functors share a single type, so the compiler
reuses the same instantiation.

## Changes

### Part 1: generate_identity_sequences helper
- Replaces common lambda pattern for generating identity sequences
- Each lambda expression creates a unique closure type, causing separate
template instantiations at every call site
- Named helper shares a single type across all uses

### Part 2: Named functors in transform_tensor_descriptor
- Add `unpack_and_merge_sequences` helper to replace lambda in
`GetNumOfHiddenDimension`
- Use `generate_identity_sequences` in `matrix_padder.hpp`

## Test Plan

- [x] Added 7 unit tests:
  - 4 tests for `generate_identity_sequences`
  - 3 tests for `unpack_and_merge_sequences`
- [ ] Waiting for full CI

## Related PRs

This PR merges the functionality from:
- ROCm/composable_kernel#3588 (generate_identity_sequences helper)
- ROCm/composable_kernel#3589 (Named functors in
transform_tensor_descriptor)

Part of PR stack for issue #4229 (Reduce CK/CKTile Build Times)

**Note:** This PR supersedes #4283, ROCm/composable_kernel#3588 and
ROCm/composable_kernel#3589, which can be closed once this is merged.

---
🔁 Imported from
[ROCm/composable_kernel#3628](https://github.com/ROCm/composable_kernel/pull/3628)
🧑‍💻 Originally authored by @tenpercent

Co-authored-by: Claude Opus 4.6 <noreply@anthropic.com>
2026-02-28 12:10:11 -08:00
Aviral Goel
20755a0bd2 [CK] Add split-K support for ABQuantGrouped in block_scale_gemm (#4816)
## Changes

### Split-K support in `gemm_quant_kernel.hpp`

- **`SplitKBatchOffset`**: Added `aq_group_offset` and
`aq_k_split_offset` fields (mirroring the existing `bq_*` fields for B)
to track each split-K batch's position within the AQ scale tensor. For
`ABQuantGrouped`, both offsets are computed from `k_id * KRead` divided
by `AQuantGroupSize::kK`.

- **`MakeAQBlockWindow`**: Added an `aq_group_offset` parameter
(defaulting to 0 for non-split-K paths) so the AQ tensor view's K-group
dimension reflects only the remaining K-groups from the split-K offset,
consistent with how `MakeBQBlockWindow` handles the BQ tensor.

- **`RunGemm`**: Threads the `aq_k_split_offset` through to
`MakeAQBlockWindow` when in split-K mode.

### Constraints in `IsSupportedArgument()`

Four constraints gate split-K (`k_batch > 1`) for ABQuantGrouped:

1. **Mode check** — split-K is only allowed for `BQuantGrouped` (no
preshuffle) or `ABQuantGrouped` (no `APreshuffleQuant`). Any other quant
mode with `k_batch > 1` returns `false`.

2. **B quant group alignment** — `KRead` (per-batch K slice) must be
divisible by `BQuantGroupSize::kK`. Each batch must operate on complete
B quantization groups; a partial group would require splitting a scale
value across batches.

3. **A quant group alignment** (new, ABQuantGrouped only) — `KRead` must
also be divisible by `AQuantGroupSize::kK` for the same reason applied
to the AQ scale tensor.

4. **Minimum 2 K-tile iterations per batch** (new) — The
software-pipelined GEMM kernels (CompV3 family) prefetch one tile ahead,
so they require `per_batch_num_loop = KRead / KPerBlock >= 2`. When
`KRead == KPerBlock` (i.e. each batch is exactly one tile), the prefetch
reads into the next batch's memory region and produces incorrect
results. Configurations where `K == k_batch * KPerBlock` are therefore
rejected.

### Example update (`run_gemm_quant_example.inc`)

Updated the comment above the `IsSupportedArgument` call to document
that split-K is now supported for both `BQuantGrouped` (no preshuffle)
and `ABQuantGrouped` (no `APreshuffleQuant`).

## Unit Tests

Two new test files covering decode and prefill tile shapes across a
range of `k_batch` values (2–8), data types (FP8, BF8), and quantization
group sizes (1×1×128 and 1×128×128 for B):

- `test_gemm_quant_abquant_splitk_decode.cpp` — uses the decode tile
shape (M=16, N=64, K_tile=256)
- `test_gemm_quant_abquant_splitk_prefill.cpp` — uses the prefill tile
shape (M=128, N=128, K_tile=128)

Each test calls `run_test_with_validation` which runs the kernel and
checks correctness against a CPU reference. Configurations excluded from
tests are annotated with comments explaining which constraint they
violate (typically the `per_batch_num_loop >= 2` requirement).

## Prerequisites

This PR depends on #4429, which must be merged before this can be
merged.

---------

Co-authored-by: Erwin Terpstra <erwin.terpstra@streamhpc.com>
Co-authored-by: Illia Silin <98187287+illsilin@users.noreply.github.com>
Co-authored-by: Thomas Ning <Thomas.Ning@amd.com>
2026-02-26 15:56:34 -08:00
Illia Silin
3a76dfd28f [CK] Disable test_fmha_fwd_fp8fp16 on gfx90a by default. (#4883)
## Motivation

Since gfx90a has no native support for FP8 datatype, all FP8 tests
should be disabled there by default.

## Technical Details

The test_fmha_fwd_fp8fp16 is the last failing test in CK on gfx90a with
staging compiler.

## Test Plan

<!-- Explain any relevant testing done to verify this PR. -->

## Test Result

<!-- Briefly summarize test outcomes. -->

## Submission Checklist

- [ ] Look over the contributing guidelines at
https://github.com/ROCm/ROCm/blob/develop/CONTRIBUTING.md#pull-requests.
2026-02-26 02:08:07 +00:00
Yung-sheng Tu
7d44040928 Implement device_grouped_gemm_fixed_nk_bias for RDNA4 (#4340)
## Proposed changes

Summary:

- Modified implementation for grouped_gemm_fixed_nk_bias
- FP16 WMMA examples
- WMMA instances
- Profiler for grouped_gemm_fixed_nk_bias
- Add WMMA instances to existing tests

**This PR depends on PR https://github.com/ROCm/rocm-libraries/pull/4299
and should be merged after it.
Only the last 6 commits are in the scope of this PR.**

## Checklist

Please put an `x` into the boxes that apply. You can also fill these out
after creating the PR. If you're not sure, please don't hesitate to ask.

- [x] I have added tests relevant to the introduced functionality, and
the unit tests are passing locally
- [x] I have added the test to REGRESSION_TESTS list defined at the top
of CMakeLists.txt in tests/CMakeLists.txt, **IF** the test takes more
than 30 seconds to run.
- [x] I have added inline documentation which enables the maintainers
with understanding the motivation
- [x] I have removed the stale documentation which is no longer relevant
after this pull request
- [ ] (If this change is user-facing) I have added release notes which
provide the end users with a brief summary of the improvement from this
pull request
- [x] I have run `clang-format` on all changed files
- [ ] Any dependent changes have been merged

## Discussion

If this is a relatively large or complex change, feel free to start a
discussion by explaining why you chose the solution you did and what
alternatives you considered

## Submission Checklist

- [x] Look over the contributing guidelines at
https://github.com/ROCm/ROCm/blob/develop/CONTRIBUTING.md#pull-requests.

---------

Co-authored-by: Illia Silin <98187287+illsilin@users.noreply.github.com>
2026-02-26 00:28:09 +00:00
JP-Fernando
dd4912e82d [CK] Remove duplicated XDL/WMMA tests (#4415)
## Motivation

When we started the RDNA4 support, the XDL instances were not supporting
WMMA instructions, so we duplicated some tests.

In this issue, we simplified most of the duplicated test files into
common test files.

## Technical Details

The following tests were unified:

- `batched_gemm`

- `batched_gemm_gemm`

- `gemm_add`

- `gemm_universal`

- `grouped_convnd_bwd_data`

The following tests were duplicated exactly, and copied into two files
with `_xdl` and `_wmma` suffixes. Now they are unified in one single
file without suffix:

- `gemm_multi_abd`

- `gemm_b_scale`

There is still an apparent duplication which is a special case, namely
`test_grouped_convnd_bwd_weight_interface_{suffix}` where `{suffix}` is
`xdl` or `wmma`.
However, the WMMA code relies on an old implementation, and is expected
to be removed in the future. In addition, it differs from the XDL
implementation significantly.
Therefore, it was decided to keep both files separate instead of
attempting any unification.

## Test Plan

`CMakeLists.txt` files were modified to support the new, unified tests. 
In particular, testing was done for `gfx90a`, `gfx1201` and `gfx11`
architectures.

## Test Result

All tests passed successfully on all three tested architectures.

## Submission Checklist

- [x] Look over the contributing guidelines at
https://github.com/ROCm/ROCm/blob/develop/CONTRIBUTING.md#pull-requests.

---------

Co-authored-by: Fernando Jiménez <fernando.jimenez@streamhpc.com>
2026-02-25 23:22:05 +00:00
Bartłomiej Kocot
ac1d46cd90 [CK] Small improvements for grouped conv backward weight (#4872)
## Motivation

Improvements for CK Tile convolution builder run function and atol/rtol
calculations.

## Technical Details

- Add preprocessing function for wrw when k_batch is larger than 1 for
builder run function
- Divide num acums by number of groups to get real number of accums

## Test Plan

CI wrw tests

## Test Result

pending

## Submission Checklist

- [x] Look over the contributing guidelines at
https://github.com/ROCm/ROCm/blob/develop/CONTRIBUTING.md#pull-requests.

AICK-783
2026-02-25 20:10:12 +00:00
Zoltán Lakatos
29c7a98292 [CK] Implement device grouped gemm fixed nk multi abd for rdna4 (#4425)
## Motivation

Add support for grouped gemm multi ABD fixed NK. MR

## Technical Details

Changes from the reverted PR:
- Device struct for grouped gemm with multiple ABD and fixed NK
(DeviceGroupedGemm_Wmma_Multi_ABD_Fixed_NK).
- Wmma versions of existing example codes: 59_grouped_gemm_multi_ABD
- Unit tests for both new wmma implementation and the reference xdl code
(previously missing)
- Note: Some Xdl instances were commented out because of unit test
failures. As mentioned apparently for xdl this feature was missing tests
so our assumption is either there is an implemenetation bug or these
instances were not set up correctly. Has the potential for a follow-up
issue.
- Generic ck profiler interface with the purpose of calling unit tests.
- Gemm instances with specific elementwise operations for gemm bias gelu
calculations.
- Added class for grouped gemm multi ABD reference calculations.

Fix epilogue selection in device implementation that caused unit test
failures

## Test Plan

Covered by added unit tests

## Test Result

CI successfully passing

## Submission Checklist

- [ ] Look over the contributing guidelines at
https://github.com/ROCm/ROCm/blob/develop/CONTRIBUTING.md#pull-requests.

---------

Co-authored-by: Zoltán Lakatos <zoltan.lakatos@streamhpc.com>
Co-authored-by: Illia Silin <98187287+illsilin@users.noreply.github.com>
2026-02-25 05:16:07 +00:00
assistant-librarian[bot]
45c177c384 [CK_TILE] Extend support of mix precision microscaling BQuant (#4267)
## Proposed changes

Supported types combinations using BQuant=e8m0:
 - A=bf16
 - B=bf16,bf8,fp4

Summary:
- remove usage of `pk_fp4_raw_t`: consistent with other implementations
and avoid taking into account of the packed size explicitly. In general,
the raw type should not be used because CK Tile internally takes care of
the PackedSize, so using the raw type adds unnecessary complexity to the
implementation
- handle microscaling by checking for `e8m0` type for BQuant (previous
implementation was inconsistent)
 - add support for scaling instructions in `DequantPack8`
 - mx pipeline:
   - extend existing pipeline to support different B types
- add support to scale and cast before writing to LDS or after reading
from LDS (this can be defined in the `Problem` by the user)
 - block gemm:
   - mx pipeline is now using block gemm BQuant
- block gemm BQuant can now load from LDS and apply scale and then call
block gemm universal operator. This adds new functionalities and remove
code duplication
 - warp gemm:
- add case to support 128bit ds_read/write for both A and B when A=16bit
and B=8bit
- add examples and tests: note that some tests for bf16/fp4 already
existed but were removed during previous tests refactoring. I added them
again and other relevant tests for new types combinations

## Checklist

Please put an `x` into the boxes that apply. You can also fill these out
after creating the PR. If you're not sure, please don't hesitate to ask.

- [ ] I have added tests relevant to the introduced functionality, and
the unit tests are passing locally
- [ ] I have added the test to REGRESSION_TESTS list defined at the top
of CMakeLists.txt in tests/CMakeLists.txt, **IF** the test takes more
than 30 seconds to run.
- [ ] I have added inline documentation which enables the maintainers
with understanding the motivation
- [ ] I have removed the stale documentation which is no longer relevant
after this pull request
- [ ] (If this change is user-facing) I have added release notes which
provide the end users with a brief summary of the improvement from this
pull request
- [ ] I have run `clang-format` on all changed files
- [ ] Any dependent changes have been merged

## Discussion

If this is a relatively large or complex change, feel free to start a
discussion by explaining why you chose the solution you did and what
alternatives you considered



---
🔁 Imported from
[ROCm/composable_kernel#3689](https://github.com/ROCm/composable_kernel/pull/3689)
🧑‍💻 Originally authored by @EnricoDeg

---------

Co-authored-by: Enrico Degregori <enrico@streamhpc.com>
Co-authored-by: systems-assistant[bot] <systems-assistant[bot]@users.noreply.github.com>
Co-authored-by: Thomas Ning <Thomas.Ning@amd.com>
Co-authored-by: Enrico Degregori <73224202+EnricoDeg@users.noreply.github.com>
Co-authored-by: Illia Silin <98187287+illsilin@users.noreply.github.com>
2026-02-24 09:55:50 -08:00
Emily Martins
cf00dc87d0 [CK_TILE] Update Stream-K Reduction Strategy Enum (#4756)
## Motivation

Currently, Stream-K has 3 reduction options: 1) atomics, 2) The
reduction described in the Stream-K paper, and 3) a tree reduction. The
reduction strategy described in the original Stream-K paper has the
starting workgroup of each tile sequentially accumulating partial
results of other contributing workgroups in the tile, which requires a
linear number of steps. Hence, for clarity, this works updates the
naming of the `StreamKReductionStrategy` enum members to better describe
the existing reduction strategy options.

## Technical Details

Prior to this change, the enum is as follows:
```cpp
enum StreamKReductionStrategy : uint32_t
{
    Atomic        = 0u,
    Reduction     = 1u,
    TreeReduction = 2u
};
```
But, the distinction between `Reduction` and `TreeReduction` is not very
clear and has some redundancy.
Hence, the updated enum is as follows:
```cpp
enum StreamKReductionStrategy : uint32_t
{
    Atomic = 0u,
    Linear = 1u,
    Tree   = 2u
};
```
All references to `StreamKReductionStrategy` were updated to reflect
this change.
## Test Plan

No new functionality was added, so no new tests were added; I just
validated existing tests and examples.

## Test Result

All tests passed locally.

## Submission Checklist

- [x] Look over the contributing guidelines at
https://github.com/ROCm/ROCm/blob/develop/CONTRIBUTING.md#pull-requests.
2026-02-24 06:40:08 +00:00
Cong Ma
6286c71499 [CK TILE] Refactor sequence_reverse_inclusive_scan (#4355)
## Proposed changes

Refactor ck tile `sequence_reverse_inclusive_scan` from recursive to
for-loop.

Tracking issue: #4229

This pull request introduces a new lightweight array type,
`static_array`, and refactors the sequence utilities to use it for
improved constexpr support and simplicity. The changes also include
updates to the build system to add container-related tests.

**Core Library Improvements:**

* Added a new header `static_array.hpp` that defines the `static_array`
type, a constexpr-friendly array with basic accessors and no custom
constructors.
* Updated includes in `core.hpp` and `sequence.hpp` to import
`static_array`.
[[1]](diffhunk://#diff-14b406eccf59794051a16c0c9c1a7e11234324bfdd107a5bbe0f173cd25bcddcR44)
[[2]](diffhunk://#diff-5042e5b47bb2ba78bbab2d284338cf0503bc8fb76a7d631cc2684ad6ca832a76R7)

**Refactoring to Use `static_array`:**

* Refactored sequence utilities in `sequence.hpp` to use `static_array`
instead of the previously forward-declared `array` type, including in
histogram and array generation logic.
[[1]](diffhunk://#diff-5042e5b47bb2ba78bbab2d284338cf0503bc8fb76a7d631cc2684ad6ca832a76L1108-R1133)
[[2]](diffhunk://#diff-5042e5b47bb2ba78bbab2d284338cf0503bc8fb76a7d631cc2684ad6ca832a76L1130-R1146)
* Rewrote the implementation of `sequence_reverse_inclusive_scan` to use
`static_array` for intermediate storage, improving constexpr evaluation
and clarity.

**Build System and Testing:**

* Added a new test subdirectory for container tests and a GoogleTest
executable for `unit_sequence.cpp` to the CMake build configuration.
[[1]](diffhunk://#diff-5d35ff7555d3f0b438d45cde06b661eb1332cdbec66287ac7ec3c478d688aae5R5)
[[2]](diffhunk://#diff-1f54f0d2b431b7fc74f7b4ffb66e80c381c904c3383b1d27987467e3482d6d7aR1-R7)

Co-authored-by: Illia Silin <98187287+illsilin@users.noreply.github.com>
2026-02-23 14:12:03 -07:00
Anton Gorenko
ce6acc5f66 [CK_TILE][FMHA] Support gfx11 (#4584)
## Motivation

Add support of gfx11 architectures (RDNA3) to FMHA.

## Technical Details

Distributions (matrix elements to lane registers mapping) of gfx11 WMMA
are completely different from distributions of gfx9 MFMA and gfx12 WMMA.
There are two cases in FMHA where this difference matters:
* usage of results (matrix C) of one GEMM as input (matrix A) of another
GEMM.
* random number generation for dropout (implementation for gfx9 MFMA,
gfx12 WMMA and host validation produce the same results).

Both cases are solved by a special remapping implemented using
`__builtin_amdgcn_permlanex16` and `__builtin_amdgcn_perm`.

Additional changes:
* FMHA tests are now build and run only for those types for which
instances exist (gfx11 supports only fp16 and bf16).
* Two fixes for uninitialized values (`mask.sink` and
`do_fp8_static_quant`): they may contain garbage resulting in incorrect
dispatching logic, sometimes tests report that there are no instance
available for current parameters.
* Small fix to remove expcnt(0) from s_waitcnt instruction on gfx11 when
they are not requested (i.e. every time), likely has no effect on
performance but makes disassembly a bit clearer.

## Test Plan

```
ninja test_ck_tile_fmha

bin/test_ck_tile_fmha_fwd_fp16
bin/test_ck_tile_fmha_fwd_bf16
bin/test_ck_tile_fmha_bwd_fp16
bin/test_ck_tile_fmha_bwd_bf16
```

## Test Result

All tests must pass (some tests may be skipped).

## Submission Checklist

- [x] Look over the contributing guidelines at
https://github.com/ROCm/ROCm/blob/develop/CONTRIBUTING.md#pull-requests.

---------

Co-authored-by: Illia Silin <98187287+illsilin@users.noreply.github.com>
2026-02-20 17:15:10 -08:00
assistant-librarian[bot]
fc19663d91 173 implement device grouped gemm fixed nk for rdna4 (#4299)
## Proposed changes

This PR adds an RDNA4 implementation of the device_grouped_gemm_fixed_nk
instance library using for WMMA.

The implementation is based on the existing
DeviceGroupedGemm_Xdl_Fixed_NK design and reuses the same high-level
structure, but replaces the XDL kernel with a WMMA-based one. It uses
the GridwiseGemm_wmma_cshuffle_v3 kernel.

At this stage, the focus is functional correctness and compatibility,
not performance tuning.

## Technical Details

- Device struct for grouped gemm fixed NK
- Example code for the WMMA version
- Unit tests for both new wmma implementation and the reference XDL code
(previously missing)
- Generic ck profiler interface with the purpose of calling unit tests.

## Checklist

Please put an into the boxes that apply. You can also fill these out
after creating the PR. If you're not sure, please don't hesitate to ask.

- [x] I have added tests relevant to the introduced functionality, and
the unit tests are passing locally
- [x] I have added the test to REGRESSION_TESTS list defined at the top
of CMakeLists.txt in tests/CMakeLists.txt, **IF** the test takes more
than 30 seconds to run.
- [ ] I have added inline documentation which enables the maintainers
with understanding the motivation
- [ ] I have removed the stale documentation which is no longer relevant
after this pull request
- [x] (If this change is user-facing) I have added release notes which
provide the end users with a brief summary of the improvement from this
pull request
- [x] I have run  on all changed files
- [x] Any dependent changes have been merged

## Discussion

If this is a relatively large or complex change, feel free to start a
discussion by explaining why you chose the solution you did and what
alternatives you considered



---
🔁 Imported from
[ROCm/composable_kernel#3668](https://github.com/ROCm/composable_kernel/pull/3668)
🧑‍💻 Originally authored by @bidlekm

---------

Co-authored-by: Marton Bidlek <marton.bidlek@streamhpc.com>
Co-authored-by: Erwin Terpstra <erwin.terpstra@streamhpc.com>
Co-authored-by: bidlekm <bidlekmarton@gmail.com>
Co-authored-by: assistant-librarian[bot] <assistant-librarian[bot]@users.noreply.github.com>
Co-authored-by: Illia Silin <98187287+illsilin@users.noreply.github.com>
Co-authored-by: illsilin_amdeng <Illia.Silin@amd.com>
2026-02-19 09:13:05 +01:00
Thomas Ning
be25dd6775 Fix the Composable Kernel CI and versions incompatibility (#4640)
## Motivation

This PR has 4 patches:
1. Fix the CI error of grouped gemm.
2. Fix the incompatibility of old linux version.
3. Fix the potential errors of flatmm.
4. Address the previous comments of abquant eight warps pipeline
solution.

---------

Co-authored-by: illsilin_amdeng <Illia.Silin@amd.com>
2026-02-18 06:59:37 -08:00
Christopher Millette
d0b17aab8b [CK] Optimize multi-dimensional static for loop decomposition (#4447)
## Motivation
Recursive template implementations might initially seem attractive to
minimize necessary coding.

Unfortunately, this style is often affects readability and requires
significant resources from the compiler to generate instantiation
chains. In "high-traffic" code (e.g., used in many places + compilation
units), this generally does not scale well and can bloat the overall
compile times to unnecessary lengths.

The aim of this PR is to take some of most high-traffic utility code and
try our best to eliminate recursive templates in favor of fold
expansions and constexpr function helpers.

In local tests with clang build analyzer,
device_grouped_conv2d_fwd_xdl_ngchw_gkcyx_ngkhw_f16_16x16_instance.cpp
showed high hit-rates on slow template instantiations in static_for,
dimensional static_for (static_ford), which are subsequently affected by
implementation of the Sequence class and associated transforms.

Example:
**** Templates that took longest to instantiate:
70111 ms: ck::detail::applier<int, 0, 1, 2, 3, 4, 5, 6, 7, 8, 9, 10, 11,
12, 1... (372 times, avg 188 ms) // **70 seconds!**

The above is part of the implementation of static_for which uses
Sequence classes..


## Technical Details

### Summary of Optimization Techniques

| Technique | Used In | Benefit |
 |-----------|---------|---------| 
| __Constexpr for-loop computation__ | sequence_reverse_inclusive_scan,
sequence_map_inverse | Moves O(N) work from template instantiation to
constexpr evaluation |
| __Pack expansion with indexing__ | sequence_reverse, Sequence::Modify
| Single template instantiation instead of recursive |
| __Flat iteration + decomposition__ | ford, static_ford | O(1) template
depth instead of O(N^D) |
| __Pre-computed strides__ | index_decomposer | Enables O(1)
linear-to-multi-index conversion |

### Impact on Compile Time

These optimizations reduce template instantiation depth from O(N) or
O(N^D) to O(1), which:

1. Reduces compiler memory usage
2. Reduces compile time exponentially for deep instantiation chains
3. Enables larger iteration spaces without hitting template depth limits


## Test Plan

* Existing tests for Sequence are re-used to affirm correctness
* Unit tests for ford and static_ford are added (dimensional looping)
* 8 new regression tests specifically verify the fixes for the PR
feedback:

  - `NonTrivialOrder3D_201` - Tests Orders<2,0,1> for static_ford
  - `NonTrivialOrder3D_201_Runtime` - Tests Orders<2,0,1> for ford
- `ConsistencyWithNonTrivialOrder_201` - Verifies static_ford and ford
consistency
  - `NonTrivialOrder3D_120` - Tests Orders<1,2,0> for static_ford
  - `NonTrivialOrder3D_120_Runtime` - Tests Orders<1,2,0> for ford
  - `NonTrivialOrder4D` - Tests 4D with Orders<3,1,0,2> for static_ford
  - `NonTrivialOrder4D_Runtime` - Tests 4D with Orders<3,1,0,2> for ford
- `AsymmetricDimensionsWithOrder` - Tests asymmetric dimensions with
non-trivial ordering


## Test Result
### Compile Time Comparison: `8b72bc8` (base) → `477e0686` (optimized)

#### Commits in Range (8 commits)

1. `fd4ca17f48` - Optimize sequence_reverse_inclusive_scan and
sequence_reverse
2. `7a7e3fdeef` - Optimize sequence_map_inverse
3. `92855c9913` - Optimize ford and static_ford calls to eliminate
nested template recursion
4. `88a564032b` - Add unit tests for ford and static_ford
5. `1a0fb22217` - Fix clang-format
6. `8a0d26bddf` - Increase template recursion depth to 1024
7. `dc53bb6e20` - Address copilot feedback and add regression tests
8. `477e06861d` - Increase bracket depth to 1024

#### Build Timing Results

| File | Base (8b72bc8759d9 | HEAD(a0438bd398) | Improvement | 
|------|------|------|-------------| 
| grouped_conv2d_fwd (f16) -j1 | 313.31s | 272.93s | __12.9% faster__ | 
| grouped_conv1d_fwd (bf16) -j1 | 79.33s | 68.61s | __13.5% faster__ | 
| grouped_conv1d_bwd_weight (f16) -j1| 15.77s | 14.31s | __9.2% faster__
|
| device_grouped_conv2d_fwd_instance -j64 | s | s | __% faster__ |


#### Key Optimizations

1. __sequence_reverse_inclusive_scan/sequence_reverse__: O(N) → O(1)
template depth
2. __sequence_map_inverse__: O(N) → O(1) template depth
3. __ford/static_ford__: O(N^D) → O(1) template depth using flat
iteration with index decomposition
4. __Copilot feedback fixes__: Corrected New2Old mapping for non-trivial
orderings


## Submission Checklist

- [ ] Look over the contributing guidelines at
https://github.com/ROCm/ROCm/blob/develop/CONTRIBUTING.md#pull-requests.

---------

Co-authored-by: Max Podkorytov <4273004+tenpercent@users.noreply.github.com>
2026-02-11 22:12:31 +00:00
Bartłomiej Kocot
4bf06885af [CK][CK TILE] Add has hot loop check for pipeline v1 (#4407)
## Motivation

Add has hot loop check for pipeline v1 (v1 basic and v1 basic async).
Enable more tests which have been fixed by this change.

## Technical Details

Hot loop has been executed without num loop check.

## Test Plan

test_grouped_convnd_fwd_tile

## Test Result

Passed

## Submission Checklist

- [x] Look over the contributing guidelines at
https://github.com/ROCm/ROCm/blob/develop/CONTRIBUTING.md#pull-requests.
AICK-651
AICK-663
2026-02-11 13:41:59 +00:00
Cong Ma
15635d4b11 [CK TILE] fix numerical errors of preshuffle_b (#4354)
This pull request introduces several improvements and fixes related to
quantized grouped GEMM (General Matrix Multiply) pipelines and their
supporting utilities.

# The numerical issue

## Steps to reproduce
```bash
Run 
./bin/tile_example_gemm_weight_preshuffle -prec=fp8
./bin/tile_example_gemm_weight_preshuffle -prec=int4
```

# Solution
The main changes address type correctness, improve data layout and
shuffling logic, and expand test coverage to better validate different
GEMM configurations.

**Key changes include:**

### Data layout and shuffling logic

* Refactored the logic in `shuffle_b_permuteN` to use `constexpr`
variables for `KLane` and `ItemsPerAccess`, simplifying tile view
construction and correcting the permutation order for improved
efficiency and correctness (`tensor_shuffle_utils.hpp`).
* Fixed the calculation of `KLaneBytes` in weight preshuffle pipeline
policies to account for internal data type conversion (e.g., from
`pk_int4_t` to `fp8`), ensuring accurate memory access and alignment in
quantized GEMM policies (`wp_pipeline_agmem_bgmem_creg_base_policy.hpp`,
`gemm_wp_abquant_pipeline_ag_bg_cr_base_policy.hpp`).
[[1]](diffhunk://#diff-93f16cd76e6e24404777e682a5ac8e039913ddd6a438c7efd61fdda42276e4efL274-R275)
[[2]](diffhunk://#diff-9c3d0fc3c014feed435bfd93ba1f8f9fb3e054dcc322deada3addf70bee5a58cL100-R105)

### Test infrastructure enhancements

* Unit tests did not catch this issue since there were no tests for fp8.
Added new configuration structs (`config_mn_16x16`, `config_mn_32x32`)
to support additional GEMM tile shapes and updated tests to run with
these configurations for broader coverage
(`test_gemm_pipeline_util.hpp`).
[[1]](diffhunk://#diff-5a5962b2c4aa7f6a87d1d6201ad383135e30df13b42654e997d870d57420d5b8R86-R103)
[[2]](diffhunk://#diff-5a5962b2c4aa7f6a87d1d6201ad383135e30df13b42654e997d870d57420d5b8L255-R269)

Co-authored-by: Illia Silin <98187287+illsilin@users.noreply.github.com>
2026-02-10 23:04:44 -08:00
assistant-librarian[bot]
f6bb48458d [CK_TILE]: PreshuffleB + PreshuffleBQuant for ABQuant pipeline (#4268)
## Proposed changes

Implement BQuantPreshuffle option for the ABQuant PreshuffleB pipeline.

## Checklist

Please put an `x` into the boxes that apply. You can also fill these out
after creating the PR. If you're not sure, please don't hesitate to ask.

- [X] I have added tests relevant to the introduced functionality, and
the unit tests are passing locally
- [X] I have added the test to REGRESSION_TESTS list defined at the top
of CMakeLists.txt in tests/CMakeLists.txt, **IF** the test takes more
than 30 seconds to run.
- [X] I have added inline documentation which enables the maintainers
with understanding the motivation
- [X] I have removed the stale documentation which is no longer relevant
after this pull request
- [ ] (If this change is user-facing) I have added release notes which
provide the end users with a brief summary of the improvement from this
pull request
- [X] I have run `clang-format` on all changed files
- [X] Any dependent changes have been merged



---
🔁 Imported from
[ROCm/composable_kernel#3687](https://github.com/ROCm/composable_kernel/pull/3687)
🧑‍💻 Originally authored by @ErwinTerpstra

---------

Co-authored-by: Erwin Terpstra <erwin.terpstra@streamhpc.com>
Co-authored-by: systems-assistant[bot] <systems-assistant[bot]@users.noreply.github.com>
2026-02-10 06:57:55 -07:00
Bartłomiej Kocot
23b32f1ff8 [CK] CK Tile grouped convolution direct load (#4406)
## Motivation

CK Tile grouped convolution forward direct load support.

## Technical Details

Basic pipeline for direct load and new instances for forward for v1 and
v4 pipelines.

## Test Plan

test_grouped_convnd_fwd_tile

## Test Result

CI pending

## Submission Checklist

- [x] Look over the contributing guidelines at
https://github.com/ROCm/ROCm/blob/develop/CONTRIBUTING.md#pull-requests.
AICK-130
2026-02-09 22:08:57 +01:00
Aviral Goel
01d37b171d Increase tolerance for FP16 GEMM tests to handle non-deterministic ro… (#4335)
…unding

Three tests were failing intermittently with small errors (0.01-1.5%)
due to non-deterministic FP16 accumulation order from GPU thread
scheduling:
- test_ck_tile_batched_gemm
- test_ck_tile_grouped_gemm_preshuffle
- test_ck_tile_grouped_gemm_multi_d

These tests use kbatch=1 (no split-K), so errors are from
order-dependent rounding, not atomics. Increased tolerances from 1e-3 to
2e-3 (0.2%) to account for FP16 precision limits while still catching
real bugs.


- [x] Look over the contributing guidelines at
https://github.com/ROCm/ROCm/blob/develop/CONTRIBUTING.md#pull-requests.

Co-authored-by: Illia Silin <98187287+illsilin@users.noreply.github.com>
2026-02-06 16:14:28 -08:00
Enrico Degregori
f18a97a1f2 [CK] Workaround blockscale wp test failure (#4372)
## Motivation

Workaround to fix blockscale wp test failure for pipeline v3

## Technical Details

<!-- Explain the changes along with any relevant GitHub links. -->

## Test Plan

<!-- Explain any relevant testing done to verify this PR. -->

## Test Result

<!-- Briefly summarize test outcomes. -->

## Submission Checklist

- [ ] Look over the contributing guidelines at
https://github.com/ROCm/ROCm/blob/develop/CONTRIBUTING.md#pull-requests.
2026-02-06 16:09:08 -08:00
Illia Silin
aef327296e Revert "Implement device grouped gemm fixed nk multi abd for rdna4 (#3619)" (#3705)
This reverts commit 372a284890dc19cfd3c241c3e9a6076d35e843a5.

[ROCm/composable_kernel commit: 569640dc70]
2026-02-03 09:52:14 -08:00
Emily Martins
4add4af76e [CK_TILE] Stream-K Tile Engine Test Config File Generation (#3662)
* Stream-K smoke test config file generation

This change converts the stream-k smoke tests to use tile engine. Since
the m, n, and k values dependent on the CU count of a device, the
configs are generated during the Configuration Phase.

* Compute GEMM reference on GPU

* Remove redundant Stream-K tests

Removing redundant tests that are now run via tile engine.

* Fix relative and absolute tolerance calculation

This change updates the Stream-K tile engine interface to ensure that
num_wgs_per_tile is propaged and passed into the compare_results
function to calculate the rel and abs tolerance. Before, split-k was
used, which is incorrect for Stream-K since the split-k value is
always 1.

* Cleanup imports, types, and other misc items

This commit makes the following changes:
- Uses Typing module for nested type hints
- Uses quotes around cu_count_arg argument in generate_configs.cmake in
  if statements
- Adds explicit include for tuple in test_gemm_streamk_simple.cpp
- Adds a type for the tiles argument in argparser to check argument
  validity

* Use CU count as return value for better parsing

* Add reduction tests for bf16, fp8, and bf8

[ROCm/composable_kernel commit: 8cbd09c84a]
2026-02-03 09:12:15 -07:00
Aviral Goel
b948026e16 feat: add split_k support for block scale gemm bquant mode. (#3653)
* WIP: add splitk to bquant

* feat: add support for bf8i4 and fp8i4 by calculating correct stride for packed data types

* chore: remove temporary test script

* fix: incorrect tile window length for splitted bq tensor window

* chore: improve comments

* test: add unit tests to cover bquant splitk functionality

* fix: conflict resolution by renaming variables

[ROCm/composable_kernel commit: 3e77721755]
2026-02-02 14:41:53 -08:00
Zoltán Lakatos
839a37780c Implement device grouped gemm fixed nk multi abd for rdna4 (#3619)
* device struct implementation

* added xdl grouped multi abd fixed nk testing

* wmma implementation fixed

* avoid unnecessary device mem allocation and code cleanups

* cleanup instances definitions

* wmma examples added

* code cleanups

* fix clang format

* typo and compilation fixes related to reference gemm

* fix compilation error due to std::remove_cvref_t

* added missing hip_check_error includes

* correction to example instances

* review commentes addressed

* removed split-k from testing

* code formatting

---------

Co-authored-by: Zoltán Lakatos <zoltan.lakatos@streamhpc.com>
Co-authored-by: illsilin_amdeng <Illia.Silin@amd.com>

[ROCm/composable_kernel commit: 301eb5cf08]
2026-02-02 13:58:11 -08:00
Jan Patrick Lehr
470f031e58 [Compiler] Addressing new compiler warnings (#3640)
* [Compiler] Addressing new compiler warnings

Clang enables new lifetime warnings in production and we see build
errors due to this with the staging compiler.

The attributes added in this PR are suggested by the compiler. However,
I'm not very familiar with the code base, so the changes may be
incorrect.

* Update some more instances

* Adds file-level ignores via clang diagnostic pragma

The number of instances was large, so I decided to use file-level scope
to disable the warning via pragma clang diagnostic ignored.

It also showed this warning coming from the gtest dependency. For that,
I did add the respective command line flag to the CMake variables. I
don't know if this is acceptable or not.

* This adds the remaining instances

For a build on gfx90a.

* fix clang format

* Adding couple more instances from gfx1200 build

* Fixed another few instances

---------

Co-authored-by: Illia Silin <98187287+illsilin@users.noreply.github.com>
Co-authored-by: illsilin_amdeng <Illia.Silin@amd.com>

[ROCm/composable_kernel commit: 069500464d]
2026-02-02 09:39:48 -08:00
ZheWang
c006b10452 Mx fp6 flatmm (#3601)
* add fp6 data-type and support sync/async dwordx3 load/store

* clang-format

* pre-commit

* 1st commit

* default mnk pass ut

* fix a distrubution

* fix

* fix bdram distr

* update

* pass ut

* improve perf

* update

* clean code

* resolve copilot comment

* reslove comment

* clang-format

---------

Co-authored-by: ZheWang <zhewan@amd.com>

[ROCm/composable_kernel commit: e6bcd192d4]
2026-02-02 16:04:40 +08:00
Kiefer van Teutem
65c2e81817 Adding remaining conv, dynamic_op, and scaleadd_scaleadd_relu flavors for grouped conv fwd (#3529)
* Adding remaining flavors for grouped conv fwd

As titled. Following variants are added:
- grouped_conv2d_fwd_dynamic_op
- grouped_conv3d_fwd_dynamic_op
- grouped_conv3d_fwd_bilinear
- grouped_conv3d_fwd_convscale
- grouped_conv3d_fwd_convinvscale
- grouped_conv3d_fwd_convscale_add
- grouped_conv3d_fwd_convscale_relu
- grouped_conv3d_fwd_scale
- grouped_conv3d_fwd_combconvscale
- grouped_conv3d_fwd_scaleadd_scaleadd_relu

* Fix incomplete parsing of types from source names in add_instance_library() cmakelists function so we don't build f8 on RDNA3.

* Do not build f8 / bf8 only flavor tests on RDNA3

* Make sure we have proper generic instances for all instance lists related to the post-ces extra flavors, with scalarPerVector = 1. Then disable all but one generic instance per instance list to reduce compile time.

* Post rebase fix: Template parameters for Grouped Conv Fwd Device Impl got tweaked upstream.

* adding int8 and fp16 overloads to the elementwise operations

* fixed copilot nits

* Addressing review comments:

- removed unnecessary examples for dynamic op
- removed unnecessary conv specalizations for all the flavors
- removed spurious bilinear and scale source files

* clang-format

* reduced no of tests

---------

Co-authored-by: Wojciech Laskowski <wojciech.laskowski@streamhpc.com>

[ROCm/composable_kernel commit: 2377a62837]
2026-01-30 17:02:14 +01:00
Erwin Terpstra
09d443a7ad [CK_Tile] Support for a4w4 (fp4) in block scale gemm AB quant (#3603)
* chore: split block scale example instances in more separate files to speed up compile times

* wip: fp4 scaffolding for abquant

* feat: add fp4 decoding-while-loading to abquant pipeline

* feat: add support for fp4 CPU verification in abquant

* chore: add time tracking to reference calculation

* feat: add a4w4 test for blockscale gemm

* feat: optimize reference calculation by preconverting values to AccType

* feat: add fp4 to fp8 look-up table

* fix: reference to wrong ComputeDataType field in QuantProblem

* feat: type utilities for determining MFMA compute types

* feat: packed fp4 for abquant weight preshuffle

* feat: add separate tests for a4w4 base case, padding and preshuffleB

* fix: fp4 conversion on gfx950 attempting to use non-supported method

* fix: test case was using quant group sizes which don't work on gfx950 due to larger mfma tile size

* chore: add fp4 preshuffleb mode to block scale example

* chore: sanity check for packed types being 1 byte

* chore: clarify tensor dimension indices with constants

* chore: replace traits check with specialized check for packed types

* style: some minor refactoring and cleanup

* fix: correct conversion table for FNUZ fp8

* chore: add fp4 instances to main abquant instances again

* chore: use same initialization branch for int4 and fp4

* chore: add missing initialization for fp4 in block scale gemm example

---------

Co-authored-by: Thomas Ning <Thomas.Ning@amd.com>

[ROCm/composable_kernel commit: 6a6177a246]
2026-01-30 04:40:50 -07:00
Johannes Graner
1998be34bf [Conv] Enable bwd weight splitk autodeduction with cap (#3656)
* Enable bwd weight splitk autodeduction with cap

* Fix error threshold calculations

* Add missing logic to wmma multiple d kernel

* Fix threshold calculation

* Update test with new applicability

[ROCm/composable_kernel commit: fabac7e2c3]
2026-01-29 17:40:28 +00:00
Khushbu Agarwal
68b475ad92 [CK_Tile] Adding support for preshuffleQuant in AB quant Block Scale Gemm (#3629)
* initial commit

* preshuffleQuant support for ABQuant

* fix mxfp4 to use correct QuantGroupSize

* addressing review comments and seperated Preshufflequant for A and B

* updated grouped gemm example for updated traits definition

* fix for CI failure

* updated grouped_gemm_abquant test for updated traits definition

* updated grouped_gemm_abquant test for updated traits definition

[ROCm/composable_kernel commit: 9b168082b7]
2026-01-28 19:45:09 -08:00
Robin Voetter
97d6e59580 [CK_BUILDER] Integrate CKB validation with CK verification (#3649)
* ck-builder: tensor copy function

This function copies one tensor to another, so that the memory
layout can be changed between them.

* ck-builder: fix ck::bhalf literals

These types don't work properly.

* ck-builder: abstract compare_elements in gpu_verification.hpp and make builder use it

This reduces the amount of duplicated code a bit.

* ck-builder: add flat tensor iterator

This "iterator" type pretends to be a pointer, useful for passing
tensors to functions expecting pointer-like types.

* ck-builder: integrate validation with ck gpu verification

By templating the gpu_verify function over iterators, we can use
the new FlatTensorIterator to adapt the function to multi-
dimensional tensors without changing either implementation
too much.

* ck-builder: add check_by_accumulations

This changes the gpu_verification.hpp code to also accept "iterator"
types for the relevant gpu_verify and gpu_reduce_max functions.

* ck: fix test_gpu_verification GenerateRandomData for bhalf

is_integer_it<bhalf_t> yields true, but it is not actually
an integer.

* ck: make gpu_verification kernels be proper persistent kernels

Previously these were using a hardcoded value for the grid size. This
commit changes that so that the grid size is automatically derived
from the kernel's occupancy and the number of multiprocessors on
the GPU.

* ck: clean up gpu_verification.hpp using block_reduce

This implements a small generic block reduce function, and rewrites
the rest of gpu_verification.hpp using that function to clean it up
a bit.

* ck-builder: doc typos

* ck-builder: update testing readme with validation interface.

* ck-builder: rebase fixes + review comments

* ck-builder: fix device integer generation with float types

Passing bfloat here causes a nans due to type_convert performing
a bitcast.

* ck: another bhalf_t bug

CK expects that int-generation with ck::bhalf_t yields bhalf integers,
not unsigned integers. This makes the logic of FillUniformRandInteger
compatible with GeneratorTensor_2<InDataType>, however idiotic that
may be.

[ROCm/composable_kernel commit: 42048bdb7d]
2026-01-28 17:41:02 +01:00
damien-lejeune
373d8dd63d [CK Tile] multi reduce improvements (#3607)
* WIP: refactoring

* Swap operation/data nested loops order

* Improve memory coalescing

* Add comments

* Enforce same identity element for the reduce operations

* Re-add compile time constant

* Comment + re-add __builtin_amdgcn_readfirstlane(0) to the loop init

---------

Co-authored-by: Damien Lejeune <damien.lejeune@amd.com>

[ROCm/composable_kernel commit: 91e32f305f]
2026-01-27 12:56:09 -08:00
Bartłomiej Kocot
ab6bbbfee1 [CK TILE] Enable CK TILE Conv Fwd tests in CI and fix check_err (#3624)
* [CK TILE] Enable CK TILE Conv Fwd tests in CI and fix check_err

* Update test_grouped_convnd_fwd_tile.cpp

* Update test_grouped_convnd_fwd_tile.cpp

* Update conv_tuning_params.hpp

* clang format fix

* Update CMakeLists.txt

[ROCm/composable_kernel commit: 3d67e6c492]
2026-01-27 11:04:11 +02:00
Johannes Graner
eb72f85509 [CK tests] Extend conv GPU reference (#3539)
* test_convnd_fwd

* test_convnd_bwd_data

* test_conv_bwd_data_scale

* test_grouped_convnd_fwd_clamp

* test_grouped_convnd_fwd_scale

* multiple A/B tensors and D tensor for fwd GPU ref

* test_grouped_convnd_fwd_scaleadd_ab

* test_grouped_convnd_fwd_bias_clamp

* test_grouped_convnd_fwd_bilinear

* test_grouped_convnd_fwd_gk_bias_clamp

* Extend GPU reference to enable batchnorm epilogue

* test_grouped_convnd_fwd{,_gk}_bias_bnorm_clamp

* test_grouped_conv_bwd_data_bilinear

* test_grouped_convnd_bwd_weight_bilinear

* Add missing template instantiation

* Perform operations in float in reference

* Slightly increase tolerance for batchnorm profiler

* Revert "Slightly increase tolerance for batchnorm profiler"

This reverts commit a3b2475229.

* Revert "test_grouped_convnd_fwd{,_gk}_bias_bnorm_clamp"

This reverts commit 6da4576060.

* Revert "Extend GPU reference to enable batchnorm epilogue"

This reverts commit e2f75fa10e.

* Clarify variable names

* Refactor elementwise ops into helper functions

* Make helpers C++17-compatible

[ROCm/composable_kernel commit: c190d8d61f]
2026-01-27 09:49:42 +01:00
Robin Voetter
a7b7eae2a1 [CK_BUILDER] conv bwd weight testing (#3618)
* ck-builder: restructure testing conv

In order to prepare for bwd of conv testing, this commit moves some
files and types around so that we can reuse ckt::Args for both forward
and backwards convolution.

* ck-builder: decouple fwd_ck.hpp and fwd_reference.hpp from fwd.hpp

This will allow us to more easily include fwd.hpp from backwards
definitions, which is required for initializing bwd values.

* ck-builder: fix layout of test_ckb_conv_bwd_weight_xdl_cshuffle_v3

Turns out that the supplied layout isn't actually supported...

* ck-builder: ck and reference conv integration for bwd weight

* ck-builder: ck bwd weight execution test

* ck-builder: ckt::run support for ck-tile bwd weight

* ck-builder: ck tile bwd weight execution test

* ck-builder: extra debug printing in MatchesReference

* ck-builder: make ckt::run return RunResult

This type is more convenient than std::tuple, as it will allow us to
use google test matchers with this in the future.

* ck-builder: RunResult matcher

Using EXPECT_THAT(..., SuccessfulRun()) will generate a check and a nice error
message about how and why running an algorithm failed.

* ck-builder: doc fixes

* ck-builder: add missing headers

[ROCm/composable_kernel commit: cc75948d1c]
2026-01-26 23:50:15 +01:00
Enrico Degregori
f2c7d07666 Padding support for wave transfer (#3537)
* Add padding support with transpose

Also move check before writing storing is_src_valid during reading

* Add/modify instances to use wave transfer for gemm universal

Condition is changed so now the vectorsize of vmem reading and lds
writing must be equal to 8 in order to use the wave transfer

* Fix clang format

* Modify example

* Fix bwd data

* Add restriction for wave transfer with padding and transpose

Add test case which shows this limitation

* Fix validity checks 8 bit types

* Add validity check gemm_bias_add_reduce

* Add validity check grouped gemm tile loop

* Fix validity checks new flavours

* Minor fixes

* Fix clang format

[ROCm/composable_kernel commit: 2e49b6b2f7]
2026-01-26 12:57:09 -08:00
Aviral Goel
a26adffadf feat: Add Interwave scheduler for aquant memory pipeline (#3540)
* WIP: host level interwave pipeline compiles

* WIP: interwave implementation computes correct GEMM result when no aquant

* WIP: quantization works for subset of problem shapes

* WIP: quantization works for subset of problem shapes

* WIP: interwave memory pipeline passes local test

* feat: Add interwave pipeline implementation for memory pipline in aquant

* test: add unit test for aquant memory pipeline

* WIP: host level interwave pipeline compiles

* WIP: interwave implementation computes correct GEMM result when no aquant

* WIP: quantization works for subset of problem shapes

* WIP: quantization works for subset of problem shapes

* WIP: interwave memory pipeline passes local test

* feat: Add interwave pipeline implementation for memory pipline in aquant

* fix: compilation error on gfx950

* chore: remove debug statements from the code

* test: resolve merge conflict

* test: remove non rcr unit tests from test suite

[ROCm/composable_kernel commit: b8751e505d]
2026-01-26 11:27:42 -08:00
SamiAario-AMD
e01c295551 Re enable f8 x bf8 tests on compv3 and compv4 (#3605)
* Re-enable f8 x bf8 tests on CompV3 as they now pass

* On CompV4, fp8 x bf8 tests now pass with K_BlockSize I32

* Add a changelog entry

---------

Co-authored-by: Illia Silin <98187287+illsilin@users.noreply.github.com>

[ROCm/composable_kernel commit: 834642202c]
2026-01-26 10:23:26 -08:00
Max Podkorytov
bebf8c3720 Optimize sequence metaprogramming utilities to reduce template instantiation depth (#3585)
This change significantly improves compile-time performance by reducing template
instantiation depth for sequence generation and merging operations:

Optimizations:
- sequence_gen: Reduce instantiation depth from O(log N) to O(1) by using
  __make_integer_seq to generate indices in a single step, then applying the
  functor via pack expansion
- uniform_sequence_gen: Similarly optimized to O(1) depth using __make_integer_seq
  with a helper that applies a constant value via pack expansion
- sequence_merge: Reduce depth from O(N) to O(log N) using binary tree reduction
  strategy. Added direct concatenation specializations for 1-4 sequences to
  avoid recursion in common cases, falling back to binary tree merging for 5+
  sequences

Documentation:
- Added extensive inline comments explaining why sequence_merge cannot achieve
  O(1) depth like sequence_gen (requires computing cumulative sequence lengths
  from heterogeneous inputs, inherently requiring recursion)
- Documented the binary tree reduction approach and why it's superior to fold
  expressions for this use case

Testing:
- Added comprehensive unit tests for uniform_sequence_gen with different values,
  sizes, and edge cases
- Added tests for sequence_gen with custom functors (double, square, identity,
  constant) to verify the new implementation works with arbitrary functors
- Added tests for sequence_merge with 4, 5, and many sequences to verify both
  the direct concatenation path and binary tree reduction path
- Added tests for empty sequence edge cases

[ROCm/composable_kernel commit: de59c0716c]
2026-01-26 10:08:55 -08:00
Emily Martins
b6f1e99074 [CK_TILE] Fix alignment in Stream-K workspace buffer (#3625)
* Fix alignment issue in Stream-K workspace buffer

In CK Tile Stream-K, the workspace buffer is used to hold flags and
partials, where the first i bytes holds the flags and the remaining
bytes hold partials. This change adds padding to the flags prefix of the
workspace buffer to ensure the number of bytes is 128B-aligned. Without
this alignment, since workgroups do not skip cache when reading from
partials, they may read stale partials data in cache, leading to
incorrect results. The added padding avoids the stale data reading.

This change also re-enables the test_ck_tile_streamk_reduction tests.

* Compute reference GEMM on GPU for test verification to decrease testing time

[ROCm/composable_kernel commit: f5c2f09036]
2026-01-23 16:14:22 -07:00
arai713
bfa37887fb Addition of Stream-K tests using Tile Engine (#3514)
* Addition of Stream-K tests using Tile Engine

This change adds an implementation for generating Stream-K tests using Tile Engine.
This will generate various test executables for different combinations based on the
config files. This addition has simple tests running for bf16 and fp16, with both
atomic and reduction strategies and compv3 pipeline. The tests rely on the implementation
of Stream-K in Tile Engine.

* integrating addition of tree reduction and editing the README

* temporarily removing parallel and tree reduction from configs while bugs regarding them are being resolved

[ROCm/composable_kernel commit: b9bb1db5d9]
2026-01-22 12:53:52 -08:00
ApoorvaKalyani
ec0f5c82ca Grouped conv_fwd_bias_bnorm_clamp instances and tests (#3525)
* Added bias_bnorm_clamp instances.

* fwd_bias_bnorm_clamp comp instances

* fwd_bias_bnorm_mem_inter and mem_intra instances

* fwd_bias_bnorm_merged_group_instances

* fwd_bias_bnorm_clamp_conv3d_bf16 and f16 instances

* Device level changes for fwd_bias_bnorm_clamp

* Added the test to the regression test list.

* Removed the part 2 and 2x instances

* Removed the irrelevant checks in wmma

* Refactored the instances to adapt to new device implementation

* Updated the reference and include files

* enabling tests

* Added missing profiler

* Added missing instance entry , deleted by mistake

* Reduce bias bnorm clamp instances to only a single generic one.

* Clean up cmakelists file

* clang-format

* Change bias bnorm clamp tests to use monotone initialization values to avoid tiny off-integer gemm results on RDNA3 from blowing up.

* Renaming some instance lists and add functions to be more standardized.

* Commented out non default instances.

---------

Co-authored-by: kiefer <kiefer.van.teutem@streamhpc.com>

[ROCm/composable_kernel commit: 8daf6ea302]
2026-01-22 09:53:59 +01:00
Erwin Terpstra
b079841b10 Implement batched gemm add relu gemm add for rdna4 (#3391)
* wip: test suite for batched gemm multiple d gemm multiple d, working on gridwise implenentation

* wip: many fixes in implementation of batched gemm gemm multiple d

* wip: batched gemm gemm multiple d gridwise op compiling, not working yet

* fix: incorrect d0 grid indexing in batched gemm gemm multipled

* feat: add instances for batched gemm add relu gemm add

* chore: configure instance with low vector transfer size for odd sizes

* chore: add some more validation to device batched gemm gemm multiple d, and removed template parameter that didn't really make sense

* fix: upate device_batched_gemm_gemm_wmma to work with new gridwise changes

* fix: disable odd size tests on XDL archs

* chore: removed temporary logging

* chore: update some references to C tensor to E tensor

* Tentative fix for example template params

* Tentative fix for non-multi-D batched gemm gemm device impl.

* Tentative fix for xdl example template params

* Tentative fix for profiler build on gfx90a

* chore: improve device batched gemm gemm multi D comment to include all ops and dimensions

* chore: explicitly call ck::make_tuple to prevent issues when std::make_tuple would apply

* fix: make the gemm1 data types match what happens in the device op

* feat: add d0s/d1s datatypes and layouts to the device op type string

* chore: change element-wise op so addition happens in fp32

* chore: add static asserts for gemm0/gemm1 calculated wave sizes

* chore: also updated other element-wise ops to use fp32 calculations

* chore: log number of supported instances

* chore: update instance comment

* chore: disable kernel timing in example by default

* fix: gemm1 wave size calculation

* fix: make sure batched gemm multiple d gemm multiple d profiler performs correct type conversions

* chore: remove increased tolerance in batched gemm gemm multiple d example

* chore: add comment explaining that verification fails for certain input values

* chore: clarify instance comment

---------

Co-authored-by: kiefer <kiefer.van.teutem@streamhpc.com>

[ROCm/composable_kernel commit: d5ae81b292]
2026-01-20 13:06:59 -08:00
Max Podkorytov
8b842250da Add persistent async input scheduler for GEMM kernels (#3520)
Add signal-based synchronization for persistent GEMM kernels where
input data becomes available incrementally. Uses modulo wraparound
(like PyTorch's AsyncMM) for chunk index calculation:
  chunk_idx = ((tile_idx + tile_idx_pivot) / tiles_per_chunk) % num_chunks

Key components:
- PersistentAsyncInputScheduler struct with tiles_per_chunk_m,
  chunk_signals, tile_idx_pivot_m, and num_chunks fields
- wait_eq_wave method using __builtin_amdgcn_s_sleep for power efficiency
- IsSupportedArgument validation for scheduler parameters
- Example demonstrating async input scheduling with simulated producer
- GTest unit tests covering all layout combinations

[ROCm/composable_kernel commit: 91b4102a59]
2026-01-20 10:37:09 -08:00
Estevan Vedovelli
8e5475654b Add support to fp16 + compute fp16 and bf16 + compute bf16 contractions (#3598)
* Add support to fp16 + compute fp16 and bf16 + compute bf16 contractions

Enables hipTensor to access the WMMA HW functionalities
for these combinations of datatype on gfx11 and gfx12.

* Fix change to contraction scale tests

* Fix clang-format

[ROCm/composable_kernel commit: 7d8bca7ddc]
2026-01-20 09:39:57 -08:00
Wojciech Laskowski
6ad65bc855 WMMA support for batched_gemm_reduce (#3332)
Summary:
- added new device impl of Batched GEMM Reduce for WMMA
- added instance library
- added WMMA impl to the Batched GEMM Reduce tests

[ROCm/composable_kernel commit: b09121f860]
2026-01-20 10:50:46 +01:00
Bartłomiej Kocot
85c5741492 [CK_BUILDER] Add grouped conv fwd ck tile profiler (#3518)
* [BULDER] Add grouped conv fwd ck tile profiler

* [CK TILE] Fix grouped conv kernels splitk and double lds

* Updates

* Fixes

* Move to ckProfiler

* Fixes

* fix

* fix

* Change instances to empty list by default

* fix

* fix

* Update grouped_convolution_signatures.hpp

* Update grouped_convolution_forward_tile_algs.hpp

* [CK TILE] Add grouped convolution forward tests (#3556)

* [CK TILE] Add grouped convolution forward tests

* fix jenkins

* fixes

* comments fixes

* unit test

* unit test fix

* Move instances outside builder

* fix includes

* clang format fix

* readme fix

* fix includes

* fixes

[ROCm/composable_kernel commit: 0727e85e52]
2026-01-19 22:29:01 -07:00